Rank History for McDonogh #35 College Preparatory School
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Rank History for all students at McDonogh #35 College Preparatory School
Year |
Avg Standard Score |
Statewide Rank |
Total # Ranked High Schools |
LA State Percentile |
SchoolDigger Rating |
2007 |
25.54 |
241st |
290 |
16.9% |
|
2008 |
31.31 |
218th |
291 |
25.1% |
|
2009 |
51.63 |
162nd |
301 |
46.2% |
|
2010 |
28.74 |
247th |
297 |
16.8% |
|
2011 |
38.12 |
227th |
300 |
24.3% |
|
2012 |
36.34 |
237th |
310 |
23.5% |
|
2013 |
29.22 |
263rd |
312 |
15.7% |
|
2014 |
33.17 |
249th |
309 |
19.4% |
|
2015 |
27.17 |
265th |
312 |
15.1% |
|
2016 |
32.63 |
236th |
297 |
20.5% |
|
2017 |
20.09 |
265th |
297 |
10.8% |
|
2018 |
10.10 |
276th |
302 |
8.6% |
|
2019 |
6.94 |
291st |
313 |
7.0% |
|
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Louisiana School Rankings!
Rank History for Low Socio Economic Status students at McDonogh #35 College Preparatory School
Year |
Avg Standard Score |
Statewide Rank |
Total # Ranked High Schools |
LA State Percentile |
SchoolDigger Rating |
2019 |
10.15 |
275th |
301 |
8.6% |
|
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Best Louisiana Schools for Low Socio Economic Status Students!
Rank History for Homeless students at McDonogh #35 College Preparatory School
Year |
Avg Standard Score |
Statewide Rank |
Total # Ranked High Schools |
LA State Percentile |
SchoolDigger Rating |
2019 |
32.52 |
14th |
17 |
17.6% |
|
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Best Louisiana Schools for Homeless Students!
Rank History for Female students at McDonogh #35 College Preparatory School
Year |
Avg Standard Score |
Statewide Rank |
Total # Ranked High Schools |
LA State Percentile |
SchoolDigger Rating |
2019 |
10.07 |
266th |
292 |
8.9% |
|
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Best Louisiana Schools for Female Students!
Data source: test scores: Louisiana Dept of Education, rankings: SchoolDigger.com
As you review the school rankings data, please be aware that some of the information from certain demographics is missing. The reason for this omission is that the data has been redacted from the source data itself due to low population samples in these specific demographic groups.
Redacting data from low population samples is a necessary step to ensure the reliability and accuracy of the results, as small sample sizes may not be representative of the broader population. Additionally, this measure helps protect the privacy of individuals belonging to these demographic groups.